电力系统假数据注入攻击检测的机器学习算法

Ajit Kumar, N. Saxena, B. Choi
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引用次数: 10

摘要

由于信息通信技术(ICT)与传统电网的融合,电网正在变得智能化。然而,它也可以吸引各种网络攻击的电网基础设施。虚假数据注入攻击(FDIA)是智能电网物理部分和网络部分最常见的致命攻击之一。本文提出了一种利用机器学习算法检测电力系统中干扰信号的方法。探讨了几种特征选择技术,以寻找最合适的特征,以达到较高的精度。测试了各种机器学习算法,以遵循最合适的方法来构建针对此类攻击的检测系统。此外,数据集在两类之间具有倾斜分布,因此在实验期间解决了数据不平衡问题。此外,由于响应时间在智能电网中至关重要,因此每个实验也会根据时间复杂性进行评估。
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Machine Learning Algorithm for Detection of False Data Injection Attack in Power System
Electric grids are becoming smart due to the integration of Information and Communication Technology (ICT) with the traditional grid. However, it can also attract various kinds of Cyber-attacks to the grid infrastructure. The False Data Injection Attack (FDIA) is one of the lethal and most occurring attacks possible in both the physical and cyber part of the smart grid. This paper proposed an approach by applying machine learning algorithms to detect FDIAs in the power system. Several feature selection techniques are explored to investigate the most suitable features to achieve high accuracy. Various machine learning algorithms are tested to follow the most suitable method for building a detection system against such attacks. Also, the dataset has a skewed distribution between the two classes, and hence data imbalance issue is addressed during the experiments. Moreover, because the response time is critical in a smart grid, each experiment is also evaluated in terms of time complexity.
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